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# Successes Arrangements Probability 4 1 (0.95) 4 = 0.8415

Example A manufacturer has a 5% rate of defect when making thermostats, which are produced in batches of 4. Let’s assume that production involves independent events. That is, the failure of any individual thermostat does affect the probability of failure for any other thermostat.

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# Successes Arrangements Probability 4 1 (0.95) 4 = 0.8415

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  1. Example A manufacturer has a 5% rate of defect when making thermostats, which are produced in batches of 4. Let’s assume that production involves independent events. That is, the failure of any individual thermostat does affect the probability of failure for any other thermostat. Number of trials is fixed (4) The trials are independent. (according to given assumption). Each trial has two categories of outcome: the thermostat is manufactured successfully or it is a failure. The probabilities of failure (0.05) remain constant for different thermostats.

  2. 1 2 2 3 1 2 2 3 2 3 3 S D D S D S D S D S D S D S D S D S D S D S D S D S D S D S 0 1 1 2 4

  3. 0 1 2 3 4 # Successes Arrangements Probability 4 1 (0.95)4 = 0.8415 3 4 4(0.95)3(0.05)1 = 0.1715 2 6 6(0.95)2(0.05)2 = 0.0135 1 4 4(0.95)1(0.05)3= 0.0005 0 1 (0.05)4 = 0.0000 1.0000

  4. Example • Suppose in the previous example, batches of size 5 were being examined, and the overall defect rate was 12%. Show • Defects 0 1 2 3 4 5 • Prob of D’s .120 .121 .122 .123 .124 .125 • Non Defects 5 4 3 2 1 0 • Prob of ND’s .885 .884 .883 .882 .881 .880 • Arrangement 1 5 10 10 5 1 • P(0) = 0.527732, P(1) = 0.359817, P(2) = 0.098132, • P(3) = 0.013382, P(4) = 0.000912, P(5) = 0.000025

  5. A binomial experiment meets all the following requirements 1. The experiment must have a fixed number of trials 2. The trials must be independent. (The outcome of any individual trial doesn’t affect the probabilities in the other trials). 3. Each trial must have all outcomes classified into two categories (even though the sample space may have more than two simple events). 4. The probabilities must remain constant for each trial.

  6. The Binomial Probability Formula n denotes the fixed number of trials x denotes a specific number of successes in n trials, so that x can be any whole number between O and n p denotes the probability of success in one of the n trials 1-p denotes the probability of failure in one of the n trials P(x) denotes the probability of getting exactly x successes among the n trials.

  7. Example A manufacturer has a 15% rate of defect when making microchips, which are produced in batches of 10. In a QC inspection plan batches are considered acceptable if there are fewer than 2 defect per batch. Let X denote the number of defect per batch of 10, and p = 0.15 the defect rate. P(0) = 0.197, and P(1) = 0.347, so that the probability of accepting a batch equals P(0) + P(1) = 0.544

  8. The Binomial Probability Mass Function

  9. Example: A cosmetic salesperson who calls potential customers to sell her products has determined that 30% of her telephone calls result in a sale. Determine the probability distribution for her next three calls.

  10. Determine the cumulative distribution for her next three calls. The cumulative distribution function (CDF) for any discrete random variable is defined as Prob(x < k), where k defines the sample space.

  11. Example: The records of a department store show that 20% of their customers who make a purchase return the merchandise in order to exchange it. What is the probability that in the next six purchases (a) Exactly three customers return the merchandise? (b) At least three customers return the merchandise?

  12. Random Variables And Expectations Take the discrete Random Variable X with probability mass function P(xi) Define the expectation of X as Define the Variance of X as

  13. A Bernoulli experiment, is an experiment in which the outcome can be classified as a “success” (coded 1) or “failure” (coded 0) as follows.. • P{X = 0} = 1-p • P{X = 1} = p • where p, 0<p<1, is the probability that a trial is a “success”. O 1

  14. Expected Value and Variance of a Bernoulli RV

  15. Rules for Expectations of RV’s If a and b are scalars, E{aX + bY} = aE{X} + bE{Y} (in general) and Var{aX} = a2Var{X} (in general) and Var{X + Y} = Var{X} + Var{Y} (for independent variables X and Y)

  16. Expected Value and Variance of a Binomial RV First note that a Binomial RV can be written as the sum of n independent Bernoulli RV’s: X = X1 + X2 + ….+ Xn.

  17. Counting alpha-particles (1910) In this classic set of data Rutherford and Geiger counted the number of scintillations in 72 second intervals caused by radioactive decay of a quantity of the element polonium. Altogether there were 10097 scintillations during 2608 such intervals. Can we model these data?? Count 0 1 2 3 4 5 6 Frequency 57 203 383 525 532 408 573 Count 7 8 9 10 11 12 13 14 Frequency 139 45 27 10 4 1 0 1

  18. Characteristics of a Poisson Random Variable The experiment consists of counting the number of times a certain event occurs during a given unit of time or in a given area or volume (or weight, or distance, or any other unit of measurement). The probability that an event occurs in a given unit of time, area, volume, is the same for all the units. The number of events that occur in one unit of time, area, or volume is independent of the number that occur in other units. The mean (or expected) number of events in each unit (of time, area etc..) is denoted by the Greek letter lambda, l.

  19. The probability mass function for a Poisson RV is given by Here x is the number of observed events (alpha particles) that occur in a given time (or space) unit. P(x) is the probability of observing x events in any given unit of time. l remains unchanged regardless of which time unit is being inspected. l is often referred to as the rate at which the events occur as itself has units: # of particles per 72 second interval

  20. Is is legitimate to describe the Rutherford-Geiger data by the Poisson Probability Function? As scientists we should (1) estimate l (2) calculate P(x) using our estimate l (3) visually compare the observed counts with expected counts from the Poisson probability model!! Evaluate

  21. Xi Observed P(x) Expected = P(x)*2608 0 57 0.020858 54.399 1 203 0.080722 210.523 2 383 0.156197 407.361 3 525 0.201494 525.496 4 532 0.194945 508.418 5 408 0.150888 393.515 6 273 0.097323 253.817 7 139 0.053805 140.325 8 45 0.026028 67.882 9 27 0.011192 29.189 10 10 0.004331 11.296 11 4 0.001524 3.974 12 0 0.000491 1.282 13 1 0.000146 0.382 14 1 0.000040 0.105

  22. How Many Beds?? The mean number of patients admitted per day to the emergency room of a small hospital is 2.5. If, on a given day, there are only four beds available for new patients, what is the probability that the hospital will not have enough beds to accommodate its newly admitted patients?? Let X be the number of patients admitted. We require P(X > 5) = 1 - [P(X=0) + P(X=2) + P(X=3) + P(X=4)] using

  23. P(X<4) = 0.0821+0.2052+0.2565+0.2138+0.1336 = 0.8912 P(X>5) = 1 - 0.8912 = 0.1088

  24. For a Poisson RV we have that The Poisson probability distribution also provides a good approximation to a binomial probability distribution with mean l = np when n is large, p is small, and np <7.

  25. The probability mass function for a Poisson RV is given by Now so that the sum of the probabilities equal 1, as is the case for any mass function.

  26. so that E{X} = l for a Poisson RV.

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